The present invention relates to an arrangement for and a method of two dimensional and three dimensional precision location and orientation determination.
Position determination devices are known from the prior art. Nowadays they are increasingly applied in, for instance, vehicles such as vehicles, ships and aircraft. To that effect, such a vehicle may comprise different measurement units like a GPS (Global Positioning System), an IMU (inertial Measurement Unit and a DMI (Distance Measurement Instrument).
While travelling, output data of such measurement units is used by a processor to calculate a position and/or orientation of the vehicle. Depending on the application, the measurements made by these measurement units are used on-line or off-line.
It is a general desire to provide as accurate as possible location and orientation measurement from the 3 measurement units: GPS, IMU and DMI. Many problems should be solved to that effect, e.g., multipath problems, noise in the measurement signals and drift (or other shifts) in the output signals of the IMU. In the state of the art, Kalman filters are widely used to compensate for the drift in the output signals from the IMU as well as to compensate for other effects. Also, other statistical methods, like moving averaging techniques and white Gaussian noise filtering, can be used to remove much of the noise from signals to render them clean.
However, some filtering techniques and averaging techniques that are effectively removing Gaussian noise will work ineffectively on offsetted signals that show long time constant shifts to series of measurements, as in GPS measurements.
U.S. Pat. Nos. 5,311,195 and 5,948,043 disclose a GPS system with other sensors and non-Kalman means for identifying inaccurate GPS measurements that should not be taken into account.
The object of the present invention is to provide a position and orientation determination system and position and orientation determination method to improve at least one of position and orientation calculations based on measurements performed on board a moving vehicle along a trajectory.
To that end, the invention provides a computer arrangement as claimed in the independent apparatus claims.
Moreover, the invention relates to a method as claimed in the independent method claims.
The invention provides a very accurate and reliable way to remove inaccurate GPS samples from a set of GPS samples collected while the vehicle was moving along its trajectory. By using the claimed apparatus or method inaccurate GPS samples are eliminated in a non-linear way.
In an embodiment, the calculations as to position and orientation can be done off-line, i.e., after all measurement data from a trajectory have been collected. This is for instance true in so-called MMS systems (Mobile Mapping Systems) where position and orientation data is collected by a vehicle that travels along a road network, which position and orientation data is later used to produce 2D and/or 3D road maps or to capture geographic data that can be used in a 3D-like display of an area, like a road in a city showing also façades of buildings along the road. Other areas where the invention may be applied are in road asset inventory database creation where MMS systems can provide important support. Other sensors may be used as well, like sensors used for pavement management as geo-radar, laser based roughness coefficient measurement units, stroboscope augmented high speed vertical cameras widely used for crack detection applications, as well as laser scanners for object determination, 3D view application, etc.
The fact that, in such an embodiment, the measured position and orientation data need not be used in real-time but only afterwards, provides an off-line processor with the capacity to perform other correction mechanisms than those that are possible in real time. The off-line method of the invention provides an even more accurate option of examining all GPS samples as collected during travelling along the road network, identifying inaccurate GPS samples and not taking these inaccurate GPS samples into account anymore to calculate the traveled trajectory. The trajectory as calculated in this way has a high accuracy since it is not affected by offsetted GPS signals anymore.
Thus, the invention provides an accurate result which can be implemented quite cost effectively and that can be used in an off-line environment where position/orientation measurements are computed from data collected with a vehicle that has, for instance, been driven along a road in a smooth way (so, no sudden movements as for instance made by a racing vehicle).
In an off-line environment, the invention can be used to produce a more sensitive determination of the trajectory and therefore in the end a slightly more accurate final result. That is because in the off-line embodiment, a shape filter can be applied that is global, recursive, and self adaptive and that can classify GPS samples as being accurate or inaccurate.
In an embodiment, the invention provides the option of calculating the drift (or other shifts) in output signals of an IMU (Inertial Measurement Unit) used to calculate the position and orientation of the vehicle as a function of time. This is done by using the GPS samples and, then, the IMU signal is corrected for the drift determined in this way. The drift corrected IMU signal is, then, used as a main basis for calculating the position and orientation whereas the GPS samples are mainly used for the drift correction. The number of GPS samples used for such a drift compensation may be as high as 25%.
The invention will be explained in detail with reference to some drawings that are intended to illustrate the invention but not to limit its scope which is defined by the annexed claims and its equivalent embodiments.
In the drawings:
a shows a local vehicle coordinate system;
b shows a so-called wgs coordinate system;
a-7d show successive actions in a method to remove inaccurate GPS samples from a set of GPS samples;
a, 8b and 8c show curves to clarify how drift (and other shifts) in IMU signals can be estimated;
a and 9b show how trajectories traveled by a road vehicle can be approximated by clothoides;
a, 10b and 10c show curves to clarify how drift (and other shifts) in an IMU pitch signal can be estimated;
The system as shown in
a shows which position signals can be obtained from the three measurement units GPS, DMI and IMU shown in
pitch=∫ωx·dt
roll=∫ωy·dt
heading=∫ωz·dt
The used coordinate system is shown in
To that end, the vehicle 1 is arranged at a point with a certain latitude/longitude, with its x-axis parallel to the heading of the vehicle 1 and z-axis parallel to the local gravity vector in that point on earth.
In general the present application can be applied in a vehicle as shown in
One of the fields in which the invention may be applied relates to producing 3D images of buildings in city streets. To produce such images, MMS (mobile mapping systems) may be used that are driven by drivers through streets of interest.
It is observed that the pictures may, alternatively, have been taken by one or more cameras aboard an airborne vehicle.
Moreover, it is observed that the MMS system (or airborne system) may also comprise one or more laser scanners that collect laser samples of for instance the buildings, which laser samples are used in the process of mapping the pictures to building façades or a process of identifying road signs.
In
The processor 11 is connected to a plurality of memory components, including a hard disk 12, Read Only Memory (ROM) 13, Electrically Erasable Programmable Read Only Memory (EEPROM) 14, and Random Access Memory (RAM) 15. Not all of these memory types need necessarily be provided. Moreover, these memory components need not be located physically close to the processor 11 but may be located remote from the processor 11.
The processor 11 is also connected to means for inputting instructions, data etc. by a user, like a keyboard 16, and a mouse 17. Other input means, such as a touch screen, a track ball and/or a voice converter, known to persons skilled in the art may be provided too.
A reading unit 19 connected to the processor 11 is provided. The reading unit 19 is arranged to read data from and possibly write data on a data carrier like a floppy disk 20 or a CDROM 21. Other data carriers may be tapes, DVD, CD-R, DVD-R, memory sticks etc. as is known to persons skilled in the art.
The processor 11 is also connected to a printer 23 for printing output data on paper, as well as to a display 18, for instance, a monitor or LCD (Liquid Crystal Display) screen, or any other type of display known to persons skilled in the art. The processor 11 may be connected to a loudspeaker 29.
The processor 11 may be connected to a communication network 27, for instance, the Public Switched Telephone Network (PSTN), a Local Area Network (LAN), a Wide Area Network (WAN), the Internet etc. by means of I/O means 25. The processor 11 may be arranged to communicate with other communication arrangements through the network 27.
The data carrier 20, 21 may comprise a computer program product in the form of data and instructions arranged to provide the processor with the capacity to perform a method in accordance with the invention. However, such computer program product may, alternatively, be downloaded via the telecommunication network 27.
The processor 11 may be implemented as stand alone system, or as a plurality of parallel operating processors each arranged to carry out subtasks of a larger computer program, or as one or more main processors with several sub-processors. Parts of the functionality of the invention may even be carried out by remote processors communicating with processor 11 through the network 27.
It is observed that the arrangement shown in
In an embodiment, the processor 11 is arranged to receive the pictures as taken by camera's 9 and to store them in one of its memories, e.g., hard disk 12. Hard disk 12 also stores so-called “footprints” of the building blocks from which façade pictures are taken. These footprints comprise 2D data as to the location of the building blocks on earth. One of the memories 12-15 stores a program that can be run by the processor 11 and instructs the processor to combine the façade pictures to the footprints such that the correct façade picture is associated with the correct building block. The data thus obtained is stored for later use, e.g., in a vehicle navigation system to show a driver a 3D view of a street in which he/she is driving. This data can, to that end, be stored on a DVD.
The present invention is not directed to the computer program that can be run by the processor 11 to associate the façade pictures with the footprints. Any prior art (or still to be developed) computer program can be used in the context of the present invention to do so or it can be accomplished with the aid of an operator skilled in the art.
The present invention relates to the location and orientation data associated with for instance façade pictures. In more general terms, the invention relates to data that is collected by some measurement unit(s) where the data is associated with a location and orientation on the earth and this location and orientation is measured at the same time as that other data are measured. The measured data may, e.g., relate to something completely different than façade pictures, like roadside signs for digital maps or soil conditions to search for or explore natural energy sources in the soil (oil, gas, etc.), or cell phone or other RF signal strength measurements. So, the present invention is not restricted in its application as to the types of sensors used on the vehicle 1 to collect data that are relevant at a certain location on the earth. However, for the sake of simplicity, below sometimes the example of collecting façade pictures will be used in explaining the invention.
As will be apparent to a person skilled in the art, the 3D location data relating to each façade picture must be measured by the MMS system as accurately as possible to allow processor 11 to correctly register façade picture data to other available data such as building footprint data. These location data of the façade pictures is directly related to the location and orientation data of the MMS system at the moment each picture is taken by camera(s) 9. So, the location and orientation of the MMS system while taking the façade pictures should be known as accurately as possible. The MMS system, while taking these pictures should, for instance, have an accuracy of 1 to 1.5 meters or better as to its position in x, y, and z, and an accuracy of 0.10 or better as to its angular orientations heading, pitch and roll.
As known to persons skilled in the art, prior art systems use the GPS part of the system shown in
In real situations, the location signal from the satellite will often be received by the MMS system via multiple paths. In many occasions, the direct path SP1 and multiple paths via reflections against building blocks and trees etc. are present. One such source of reflections is, for instance, formed by large trucks passing by the MMS system. Prior art solutions are provided to cope with the multipath problem, e.g., in the form of Kalman filters, suitable statistical calculations, averaging over time, etc. Other sources of multipath errors may relate to thunderstorm clouds or other ionospheric reflections. The examples of multipath errors mentioned here are not intended to be exhaustive. However, especially in land-based applications on public roads trucks, surrounding buildings, signage and moving vehicles create complicated and fast changing local configurations. In such situation, standard methods of multipath determination based on longer time observations may well fail.
Now, it will be explained how location and orientation measurement data as collected by at least one of the two other systems IMU and DMI (
In all four areas A1, A2, A3, A4 the MMS system has collected GPS samples in order to measure its 2D location and orientation during the taking of consecutive façade pictures. The trajectory as traveled according to the GPS samples is indicated with G(i), i=1, 2, 3, . . . , I. There may be 5 or 10 or even more GPS samples per second, however, the invention is not restricted to this number.
Moreover, the IMU system has measured the trajectory as traveled by the MMS system. The trajectory as calculated by the IMU system is indicated with a solid line. Recall that the IMU is a relative position and orientation measuring device and needs an absolute reference to place it in relation to the trajectory. In this example the pure IMU position is arbitrarily placed near the true trajectory at the start (left side) of the trajectory. This solid line is indicated to deviate more and more from the true trajectory during the movement of the MMS system over time. This is due to drift or other uncalibrated shifts in the calculations made by the IMU system. Such shifts/drift is caused by the fact that the IMU only provides a relative and not an absolute measurement. The error caused by drift can be explained as follows.
As indicated above, the IMU system provides data from which the following parameters can be deduced:
For calculating the location and orientation in a 2D space, the accelerations ax and ay in the x, and y directions, as well as the speed of rotation about the z-axis, i.e., ωz, are used. From these accelerations the positions x, and y and heading can be calculated as follows:
x=∫∫a
x
·dt
2
y=∫∫a
y
·dt
2
heading=∫dωz/dt
Normally, calculating an x, y position and heading from these accelerations is not accurate enough over time, due to drift in the output signal which represents an error which then accumulates by virtue of the double integration. Such a drift may typically be in the order of 1 m per traveled km. Below, the term drift will be used to refer both to the kind of drift as explained with these equations as well as other kinds of shifts due to accumulated errors in the output signal of the IMU system.
Finally, the dash-dot curve in
As one can see from
Moreover,
In action 62, the processor 11 obtains the heading of the vehicle 1 as a function of time as measured by the GPS system. This is, here, referred to as “GPS heading”.
Other data obtained by processor 11 from the GPS system includes the x, y position of the vehicle 1, as indicated in action 88. From these x, y positions a speed of the vehicle 1 can be derived, as indicated in action 78. As known from the prior art, all these measurement data are statistically uncorrelated.
In action 64, the processor 11 obtains the speed in the rotation ωz as measured by the IMU system along the trajectory traveled by the MMS system and delivers the heading of vehicle 1 as calculated by the integration explained above.
In action 72, the processor 11 obtains the values of the wheel angles of the MMS system as measured by the DMI system as a function of time along the trajectory traveled by the MMS system.
For the purpose of calculating position and orientation in the 2D plane, the vehicle 1, which in most cases has a mass of more than 1000 kg, is considered to behave as a low pass filter. So, it is assumed that no rapid changes in the trajectory traveled by vehicle 1 will be observed while the vehicle 1 is moving. Moreover, the vehicle 1 is assumed to behave as a fixed frame.
The DMI sensor is, for instance, mounted to a rear wheel of vehicle 1. Therefore, the position fluctuations of the DMI in the 2D plane relative to the mass center of the vehicle 1 are minimal and the fluctuations in its output can be considered to be white noise with an amplitude which is much less then the fluctuations in the GPS signal. Therefore the fluctuations in the DMI output may be neglected in the calculations.
From vehicle dynamics modelling, it is well known that vehicle body angles against the local gravity vector are proportional to the vehicle's accelerations. This is true in “normal” conditions, i.e., for instance, the vehicle is not involved in an accident, the driver drives the vehicle in a quiet smooth way (no powerful driving style) in a forward direction (braking, speeding with a same proportionality factor).
Under these assumptions, the following equation is valid:
“MC Trajectory”=“V Reference Trajectory”+“MC Oscillations” (1)
where:
As the vehicle body can be considered to be a fixed frame, all points of the vehicle body share the same orientation (i.e., have the same roll, pitch and heading) as the mass centre of vehicle 1. Thus, the position of vehicle 1 can be determined as a 3D displacement vector of the position of the mass centre of vehicle 1.
In an embodiment, instead of using the centre of vehicle 1 as the centre of the local coordinate system, the position of GPS antenna 8 is used as the centre in the local coordinate system. The advantage of doing so, is that the mass centre need not be determined which facilitates the calculations.
Now, the following actions are performed by processor 11.
In action 70, the processor 11 performs a local linear regression on the heading of vehicle 1 as derived by the IMU system in order to obtain a smoothened local average value of the heading along the trajectory. In this process, the processor 11 uses multiple GPS samples, after removal of non-Gaussian noise in the GPS samples. This delivers an accurate “true” heading of the vehicle 1 with a precision that may be below 0.1 degrees. The output of action 70 is the heading of vehicle 1 as a function of time.
In action 74, the processor 11 performs a decalibration of the wheel angle rotations as delivered by the DMI. This renders the distance as traveled by that wheel. The result of action 74 is an estimation of the distance traveled by the MMS system as a function of time based on the DMI measurement. That distance is, here, referred to as “DMI distance”.
In action 80, the speed as measured by the GPS system is used by processor 11 to dynamically calibrate this DMI distance. Thus, in action 80, processor 11 produces an estimated “true” traveled distance as a function of time.
It is observed that dynamically calibrating DMI measurements with GPS speed measurements is normally more precise in determining a “true” traveled distance than obtaining that value from the IMU system as the DMI system is less affected by inertial distortions.
Both the output of action 80 and the output of action 70 are input to a next action called “curve calculation” 84. In this curve calculation action 84, the following equation is used:
INS_Trajectory2D=Traj_true2D+IMU_drift2D+IMU_noise (2)
where:
INS_Trajectory2D in equation (2) corresponds to the “estimated trajectory” in
Over small distances, the following equations are valid:
INS_Trajectory2D=Traj_True2D+IMU_drift2D+IMU_noise (small) (3)
Traj_true-2D=GPS_meas2D−GPS_noise−GPS_multipath (4)
where:
Now, from equations (3) and (4) one can derive:
IMU_drift2D=INS_Trajectory2D−IMU_noise−[GPS_meas2D−GPS_noise−GPS_multipath] (5)
Now, equation (2) is redrafted in the following form:
Traj_true2D_approx=INS_Trajectory2D−IMU_drift2D_approx (6)
where all parameters have the same meaning as in equation (2) and the addition “approx” refers to the parameter having an approximated value. Equation (6) is the equation associated with action 86. Moreover, equation (5) can be used to make a first estimation of the drift (IMU_drift2D) caused by the IMU system. I.e., one estimates that IMU_drift2D is roughly equal to:
IMU_drift2D≈[IMU_meas2D−GPS_meas-2D] (5a)
where:
IMU_meas2D=heading of vehicle as measured by the IMU system.
This can be explained with reference to
c shows a curve resulting from subtracting the curve of
Of course, when the measured GPS signal is still containing errors due to multipath problems and non-Gaussian noise, these errors will also be visible in the curve of
Combining equations (5) and (6) renders:
Traj_true2D_approx=Traj_meas2D−EQ[GPS_meas2D−GPS_noise−GPS_multipath−IMU_meas2D] (7)
where EQ[ . . . ] refers to a time series equalization of the parameters, i.e. determining a moving average (or any other low pass filter) over a predetermined number, for instance 100, of samples, between [ . . . ].
It is observed that all these 2D signals can be considered as parametrical time series having components both in the x and y direction. So, the positioning problem is decomposed to a series of 1 dimensional problems of time series equalization.
As one can see from equation (7), a problem now is that for calculating EQ[ . . . ] one needs to know both GPS_noise and GPS_multipath−IMU_meas2D. The equation will work fine if both of these parameters can be filtered out from the GPS measurements. This can be done in an iterative process as follows.
First of all, as indicated in action 92, processor 11 applies a local variance filter such that it tests whether:
|GPS_meas2D−Traj_true2D_approx|>Threshold (8)
where GPS_meas2D is formed by all GPS samples.
This “Threshold” is for instance equal to the average variance value for variance measure for GPS set GPS. The local variance may be calculated for a range of several, for instance 20 to 10, GPS samples.
a-7d show how such a variance filter may work when applied to the example shown in
a shows several curves that correspond to the ones shown in
A second curve in
A third curve in
Now, in action 92, processor 11 performs a variance filter, i.e. processor 11 compares the GPS line with the dashed line of
Here, the assumption is that the comparison with the approximated trajectory line Traj_true-2D_approx is a fair comparison which is not affected too much by any drift problems caused by the IMU system since the influence of the drift in the IMU signals is small enough to be neglected over such small time periods as a few adjacent GPS samples.
In action 90, the processor 11 now removes the GPS samples as found by the variance filter from the set of GPS samples (they may be kept in memory but are not taken into account anymore). This is indicated with crosses in
It is observed that, in an embodiment, at a later action in time, processor 11 may look for which are the best samples of the removed GPS samples and to add them to the set of accurate GPS samples again. This may take some time of the processor 11 but may also improve the approximation of the trajectory. Especially after having removed many GPS samples, recursively adding such GPS samples again to the set may significantly reduce spaces without any GPS samples. This can make the method more accurate.
In action 94, this new set of GPS samples is used to make a new estimation of the trajectory Traj_true2D_approx as traveled by vehicle 1. The new estimated trajectory is indicated with a dot-dash line in
In action 96, the processor 11 applies a “shape filter” to detect GPS samples in the set of remaining GPS samples after action 92 and to exclude them from calculating the trajectory Traj_true-2D_approx. In this “shape filter” equation (8) is applied again but then to the newly calculated trajectory from action 94 and a more sensitive Threshold
This action will render new GPS samples showing a high variance: in
As shown in
In action 100, processor 11 again calculates a new estimated trajectory Traj_true2D_approx (indicated with the dot-dash line in
Thus, due to the test in action 98, as long as GPS samples with high variance are found in the iteratively new estimated trajectory Traj_true2D_approx, GPS samples with such high variance are removed. If no such GPS samples with high variance are found anymore, as checked in action 98, the processor continues with action 102. In action 102, the processor 11 joins the resulting estimated trajectory Traj_true2D_approx with the heading of vehicle 1 as a function of time (and thus as a function of location on the trajectory).
So, after the processor 11 has performed the actions of the flow chart shown in
Note that the process of the invention makes use of a sequence of measurements before a best estimate of the trajectory is found. In a real time application, a sequence of measurements only has past measurements to take into account. While this invention could be suitably modified to apply in a real time application the full benefit is mainly achieved when the iterations allow processing of points in the past and also in the future with reference to any particular point. For this reason the invention is considered primarily for offline applications.
The following observations are made.
The method as explained with reference to
In some occasions, multipath problems may relate to a large number of GPS samples. Then, GPS samples outside the area of the multipath may be affected by the multipath too. Therefore, processor 11 may also remove some GPS measurements outside the multipath area, for instance 20 GPS samples before and after that area.
The “shape filter”, in order to properly detect differences in shape in the surrounding of “point” in the GPS curve, has to seek a compromise between the following trade-off requirements:
Multiple methods known from prior art can be used to build such a filter.
The window sample sizes used for both the variance filter and shape filter may be variable and calculated by means of traveled distance according to DMI measurements, for instance not less then 100 m (or any other value) in both time directions, to remove effects of vehicle stops.
As indicated in actions 84, 86, 94 and 100, the processor 11 calculates an estimated curve of the trajectory traveled by the MMS system. This may be done in accordance with any method known from the prior art. However, in an embodiment, the method as explained with reference to
a shows a trajectory Ttrue that is traveled by the MMS system. However, the output of action 70 providing the calculated heading as a function of time is only in the form of a finite number of samples (the IMU system provides for instance 200 samples per sec and the GPS system 5 samples per sec). So, the real trajectory as traveled by the MMS system should be approximated from these orientation samples as a function of time and from the calculated distance as is the output from action 80. A very usual way of calculating such an approximated trajectory known in the art is shown with arrow Tappr1. Arrow Tappr1 indicates a calculation based on linearly interpolating between successive calculated points P on the trajectory. However, as one can see from
An alternative way of calculating an approximated trajectory between successive points P is indicated with trajectory Tappr2 in
The solution according to
Inputs to the calculation are again the heading and distance. The calculation is made sample by sample. By using the method explained with reference to
The result is an estimated trajectory based on a concatenation of a plurality of curves Tappr2.
Calculating Orientation about X-Axis and Y-Axis, Slopes Local Gravity and Z-Level.
Above, it has been explained how a “shape filter” can be applied to remove inaccurate GPS samples from a series of GPS samples, including inaccurate GPS samples due to multipath errors. Moreover, by iteratively comparing the approximated trajectory with the trajectory as determined from the GPS samples, drift due to the IMU system can be cancelled out. By doing so, it has been shown that an accurate approximation of a trajectory in a 2D world can be determined. However, the real world is 3D and most applications based on for instance measurements by the MMS system shown in
The GPS sensors do not provide the local gravity vector. They only provide data as to the vector directed to the earth's centre.
In principle, the IMU sensors can measure the local gravity vector in stationary situations. In dynamic situations, the IMU measures a superposition of gravity forces and inertial forces. So in dynamic situations, when one tries to measure the gravity vector one needs to remove all dynamic forces from the IMU readings.
Basically, the method proposed here is as follows:
This will now be explained in a mathematical way.
Having established precise heading data, and calibrated the DMI system, the processor 11 can derive very precise dynamic accelerations that are influencing accelerometer readings. These accelerations can be described by the equations below:
{right arrow over (a)}
x
=d{right arrow over (v)}
x
/dt (9)
{right arrow over (a)}
y={right arrow over (ω)}z×{right arrow over (v)}x (10)
where:
Removal of the horizontal accelerations and additionally, the vertical accelerations can be derived from the following equation:
{right arrow over (a)}
z={right arrow over (ω)}y×{right arrow over (v)}x (11)
where:
This gives the processor 11 an opportunity to remove the major components of dynamic acceleration. Producing in this way “stationary like” readings
{right arrow over (a)}
STx
={right arrow over (a)}
IMUx
−{right arrow over (a)}
x (12)
{right arrow over (a)}
STy
={right arrow over (a)}
IMUy
−{right arrow over (a)}
y (13)
{right arrow over (a)}
STz
={right arrow over (a)}
IMUz
−{right arrow over (a)}
z (14)
where:
{right arrow over (a)}IMUx equals the acceleration measured by the IMU system in x axis
{right arrow over (a)}STx equals stationary (removed dynamic) acceleration in x axis
{right arrow over (a)}IMUy equals the acceleration measured by the IMU system in y axis
{right arrow over (a)}STy equals stationary (removed dynamic) acceleration in y axis
{right arrow over (a)}IMUz equals the acceleration measured by the IMU system in z axis
{right arrow over (a)}STz equals stationary (removed dynamic) acceleration in z axis
These “stationary like” values will be unbiased estimations of local gravity reading, however still having some white noise caused by vibration of the MMS system while travelling along the road. Average of this noise component over time will be equal to zero. So, averaging can be used to cancel this white noise from the signal.
Now, pitch and roll can be obtained from the following equations:
The values of pitchacc and rolls derived from equations (15) and (16), are unbiased approximations of pitch and roll of the orientation of the IMU system based on acceleration measurements. However, since they are derived from noisy data, they will also be noisy data.
To estimate the true values of pitch and roll of the IMU orientation, the processor 11 can use the method as described in the 2D section above in an analogical way. Above it has been explained how drift can be removed in the estimation of the vehicle heading {right arrow over (ω)}z. Now, processor 11 uses pitchacc and rollacc respectively as reference data and calculates the drift in the IMU parameters {right arrow over (ω)}y, and {right arrow over (ω)}x respectively.
a shows the resulting approximated pitch value pitchacc for a time window t0-t3. In the example, pitchacc rises at a moment t1 and decreases at a moment t2. The signal shown is provided with noise due to the MMS system vibrations during travelling on the road.
Now, the processor 11 can derive the true values of pitch and roll orientation of the IMU system, with respect to the gravity vector. In the description below, these values will be referred to as pitchtrue and rolltrue, respectively.
Processor 11 obtains the pitch value about the y axis by acceleration measurements made by the IMU system. By a double integration the processor 11 derives a calculated pitch, pitchIMU from this acceleration measurements. The result is shown in
Next, processor 11 subtracts the curve shown in
Now, the processor 11 can also calculate an accurate roll, rolltrue, in the same way as explained with respect to the pitch, pitchtrue (cf.
In principle, the stationary IMU sensors can measure the local gravity vector, that is, the local gravity vector is known once the pitch and roll relative to the local gravity vector are known. In the section above we presented a method on how to measure the local gravity vector in a dynamic situation. To further calculate slope out of these readings one needs to take into account additional dynamic properties of the vehicle. For example, if a car has a relatively short length, or the IMU system is not precisely mounted to the vehicle body, the measured local gravity vector may be accurate but the angle of the slope may still be very inaccurate. This can, of course be avoided by measuring with a very long car (or truck), and precisely mounting the IMU system to the vehicle but that is impractical. Moreover, this can be avoided by measuring with the IMU sensors while the car is driving but then the measurements may suffer too much from drifts in the IMU output.
slope_angle=arcsin(vz/vx) (17)
The vertical speed vz can also be derived from the measurements made by the IMU stationary system which measures the vertical stationary acceleration {right arrow over (a)}STz in the direction of the local gravity vector {right arrow over (g)}loc. The following equation holds:
{right arrow over (v)}
z
=∫{right arrow over (a)}
STz
·dt (18)
The result of this equation shows some drift but can well be used over small distances. The value of the vertical speed vz as derived from equation (18) can be substituted in equation (17). Moreover, the driving speed {right arrow over (v)}x as known from the DMI system can be substituted in equation (17).
In other words, by obtaining the driving speed {right arrow over (v)}x from the DMI measurements, calculating the vertical speed vz from the IMU stationary measurement as to the vertical acceleration {right arrow over (a)}STz and applying equation (17), processor 11 calculates the slope angle relative to the local gravity vector {right arrow over (g)}loc.
In a first alternative, the processor 11 uses the following equation to calculate the slope angle:
v
z
=v
x·sin(pitchtrue−k·ax) (19)
where:
It is observed that equation (19) is known as such from the prior art. What is new, however, is the insight that this equation determines the slope angle relative to the local gravity vector {right arrow over (g)}loc and that the processor 11 can, thus, easily calculate this slope.
In a second alternative, the processor 11 uses both equations (17) and (19) to calculate the slope and does not use the IMU measurements to obtain the vertical speed vz. Equation (19) is used to remove drift (or other errors) from the value obtained by equation (18) and renders an error compensated vertical speed value vz,err
Although, here, the slope calculation is presented to be based on equation (17), in general, the calculation of the slope relative to the local gravity vector may be based on any equivalent equation where measurements of the DMI system and the IMU system are used and where it is recognized that the measurements of the IMU system are made relative to the local gravity vector.
Moreover, it observed that calculating the slope relative to the local gravity vector is regarded as a separate invention, distinct from any invention in the 2D plane, such as removing inaccurate GPS samples. Once having a reasonably accurate set of GPS samples, one can calculate the slope in the way described above. This set of GPS samples need not be obtained in the way explained in this document.
Now, processor 11 can easily calculate the relative z-level of the MMS system as a function of time using the following equation:
z(t)=∫v(t)·sin(slope_angle(t)) (20)
where: z(t) is relative z-level in the direction of the local gravity vector {right arrow over (g)}loc.
This relative z-level can be used by processor 11 to calculate an absolute z-level, i.e., a z-level above sea level as measured in a z-direction opposite to the earth's centre direction. To that end, processor 11 can be arranged to derive a shift vector used to shift each relative z-level value to an absolute sea level value. Such shift vectors can, for instance, be obtained by processor 11 by averaging all GPS zGPS(t) readings that the 2D method explained above has identified as good resulting in an average value, and subtracting from this average value the average of the corresponding relative z(t) values.
Filing Document | Filing Date | Country | Kind | 371c Date |
---|---|---|---|---|
PCT/NL2006/000552 | 11/6/2006 | WO | 00 | 9/1/2009 |